Jeffrey Heer, Adam Perer
VAST 2011
We propose using Masked Auto-Encoder (MAE), a transformer model self-supervisedly trained on image inpainting, for anomaly detection (AD). Assuming anomalous regions are harder to reconstruct compared with normal regions. MAEDAY is the first image-reconstruction-based anomaly detection method that utilizes a pre-trained model, enabling its use for Few-Shot Anomaly Detection (FSAD). We also show the same method works surprisingly well for the novel tasks of Zero-Shot AD (ZSAD) and Zero-Shot Foreign Object Detection (ZSFOD), where no normal samples are available.
Jeffrey Heer, Adam Perer
VAST 2011
Xiaodan Song, Ching-Yung Lin, et al.
CVPRW 2004
Matt McKeon
IEEE TVCG
Harman Singh, Poorva Garg, et al.
NeurIPS 2022